基于拓扑图的三维封闭自由物体拓扑识别

D. Steiner, A. Fischer
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引用次数: 16

摘要

逆向工程(RE)处理大量不规则和分散的数字化点,这些点需要进行密集的处理才能重建物体的表面。自由形状物体的表面重建是基于几何和拓扑准则的。目前的拟合方法采用自下而上的方法,从点到密集网格,最后到光滑连接的自由曲面。然而,这种类型的重建可能会导致拓扑问题,从而导致不期望的表面拟合结果。这种问题在凹形状中特别常见。为了避免这类问题,本文提出了一种自动检测物体拓扑结构作为曲面拟合基础的新方法。本文所描述的拓扑重建方法基于两个阶段:(1)从三维三角形网格中生成三维非自交等距曲线(2)提取拓扑图。以具有复杂拓扑结构的自由形状物体为例,验证了该拓扑重构方法的可行性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Topology recognition of 3D closed freeform objects based on topological graphs
Reverse engineering (RE) deals with an enormous number of irregular and scattered digitized points that require intensive processing in order to reconstruct the surfaces of an object. Surface reconstruction of freeform objects is based on geometrical and topological criteria. Current fitting methods reconstruct an object using a bottom-up approach, from points to a dense mesh, and finally into smoothed connected freeform sub-surfaces. This type of reconstruction, however, can cause topological problems that lead to undesired surface fitting results. Such problems are particularly common with concave shapes. To avoid problems of this type, the paper proposes a new method that automatically detects the topological structure of an object as a base for surface fitting. The topological reconstruction method described in the paper is based on two stages: (1) creating 3D non-self-intersecting iso-curves from a 3D triangular mesh and (2) extracting a topological graph. The feasibility of the proposed topological reconstruction method is demonstrated on several examples using freeform objects with complex topologies.
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